华体会官方网页版-华体会(中国)

官方微信
友情链接

华体会官方网页版-华体会(中国):Closed-form Symbolic Solutions: A New Perspective on Solving Partial Differential Equations

2024-07-12


Wei, Shu; Li, Yanjie; Yu, Lina; Wu, Min; Li, Weijun; Hao, Meilan; Li, Wenqiang; Liu, Jingyi; Deng, Yusong

Source: arXiv, May 23, 2024; E-ISSN: 23318422; DOI: 10.48550/arXiv.2405.14620; Repository: arXiv

Author affiliation:

AnnLab, Institute of Semiconductors, Chinese Academy of Sciences Haidian, Beijing, 100083, CN University of Chinese Academy of Sciences Huairou, Beijing, 101408, CN

Abstract:

Solving partial differential equations (PDEs) in Euclidean space with closed-form symbolic solutions has long been a dream for mathematicians. Inspired by deep learning, Physics-Informed Neural Networks (PINNs) have shown great promise in numerically solving PDEs. However, since PINNs essentially approximate solutions within the continuous function space, their numerical solutions fall short in both precision and interpretability compared to symbolic solutions. This paper proposes a novel framework: a closed-form Symbolic framework for PDEs (SymPDE), exploring the use of deep reinforcement learning to directly obtain symbolic solutions for PDEs. SymPDE alleviates the challenges PINNs face in fitting high-frequency and steeply changing functions. To our knowledge, no prior work has implemented this approach. Experiments on solving the Poisson’s equation and heat equation in time-independent and spatiotemporal dynamical systems respectively demonstrate that SymPDE can provide accurate closed-form symbolic solutions for various types of PDEs.





关于我们
下载视频观看
联系方式
通信地址

北京市海淀区清华东路甲35号(林大北路中段) 北京912信箱 (100083)

电话

010-82304210/010-82305052(传真)

E-mail

semi@semi.ac.cn

交通地图
友情链接
中华人民共和国科学技术部
中国科华体会官方网页版-华体会(中国)
中国工程院
国家自然科学基金委员会
中国科华体会官方网页版-华体会(中国)大学
中国科学技术大学
中国科华体会官方网页版-华体会(中国)科技产业网
版权所有 华体会官方网页版-华体会(中国)

备案号:京ICP备05085259-1号 京公网安备110402500052 中国科华体会官方网页版-华体会(中国)半导体所声明

华体会官方网页版-华体会(中国):

华体会官方网页版-华体会(中国)